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A Study on Intrusion Detection Model Based on Hybrid Classifier

机译:基于混合分类器的入侵检测模型研究

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In order to improve the accuracy of classification problem in intrusion detection, a hybrid classifier which was composed by KPCA, BPNN and QGA, has been proposed in this paper. In the hybrid classifier, KPCA was used to reduce dimensions, and then QGA was used to search the best parameters for BPNN. BPNN which has been got the best weights matrix and thresholds by QGA, was used to train classification model. The main core factors of original dataset can be preserved by KPCA, and greatly reduced the computations. The weakness of BPNN, which was usually easy to get stuck in local minimum, can be solved by QGA. Finally, the effectiveness of hybrid classifier was proved by experiments. Compared with traditional methods, the hybrid classifier has better performance in reducing the classify errors.
机译:为了提高入侵检测中分类问题的准确性,提出了一种由KPCA,BPNN和QGA组成的混合分类器。在混合分类器中,使用KPCA减小维数,然后使用QGA搜索BPNN的最佳参数。通过QGA获得最佳权重矩阵和阈值的BPNN被用于训练分类模型。 KPCA可以保留原始数据集的主要核心因素,从而大大减少了计算量。 QNN可以解决BPNN的弱点,该弱点通常很容易陷入局部最小值。最后,通过实验证明了混合分类器的有效性。与传统方法相比,混合分类器在减少分类错误方面具有更好的性能。

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